TY - JOUR
T1 - Overcoming the Challenges of Collaboratively Adopting Artificial Intelligence in the Public Sector
AU - Campion, Averill
AU - Gasco-Hernandez, Mila
AU - Jankin Mikhaylov, Slava
AU - Esteve Laporta, M.
N1 - Publisher Copyright:
© The Author(s) 2020.
PY - 2022/4
Y1 - 2022/4
N2 - Despite the current popularity of artificial intelligence (AI) and a steady increase in publications over time, few studies have investigated AI in public contexts. As a result, assumptions about the drivers, challenges, and impacts of AI in government are far from conclusive. By using a case study that involves a large research university in England and two different county councils in a multiyear collaborative project around AI, we study the challenges that interorganizational collaborations face in adopting AI tools and implementing organizational routines to address them. Our findings reveal the most important challenges facing such collaborations: a resistance to sharing data due to privacy and security concerns, insufficient understanding of the required and available data, a lack of alignment between project interests and expectations around data sharing, and a lack of engagement across organizational hierarchy. Organizational routines capable of overcoming such challenges include working on-site, presenting the benefits of data sharing, reframing problems, designating joint appointments and boundary spanners, and connecting participants in the collaboration at all levels around project design and purpose.
AB - Despite the current popularity of artificial intelligence (AI) and a steady increase in publications over time, few studies have investigated AI in public contexts. As a result, assumptions about the drivers, challenges, and impacts of AI in government are far from conclusive. By using a case study that involves a large research university in England and two different county councils in a multiyear collaborative project around AI, we study the challenges that interorganizational collaborations face in adopting AI tools and implementing organizational routines to address them. Our findings reveal the most important challenges facing such collaborations: a resistance to sharing data due to privacy and security concerns, insufficient understanding of the required and available data, a lack of alignment between project interests and expectations around data sharing, and a lack of engagement across organizational hierarchy. Organizational routines capable of overcoming such challenges include working on-site, presenting the benefits of data sharing, reframing problems, designating joint appointments and boundary spanners, and connecting participants in the collaboration at all levels around project design and purpose.
KW - adoption of AI
KW - challenges of AI
KW - interorganizational collaboration
KW - organizational routines
KW - public sector
UR - http://www.scopus.com/inward/record.url?scp=85097923580&partnerID=8YFLogxK
U2 - 10.1177/0894439320979953
DO - 10.1177/0894439320979953
M3 - Article
AN - SCOPUS:85097923580
SN - 0894-4393
VL - 40
SP - 462
EP - 477
JO - Social Science Computer Review
JF - Social Science Computer Review
IS - 2
ER -